Smart Energy Forecasting: An In-depth Study on Forecasting Methods for Electric-thermal Storage Systems

Cristian Sebastian Cubides-Herrera , Jan Mayer , Jessy Matar und Markus Duchon

IEEE SmartGridComm 2024 Conference,

September 2024 · Oslo, Norway

Zusammenfassung

Smart grid developments have gained significant attention due to their potential to optimise energy consumption and reduce environmental impacts. For this reason, it is crucial to forecast future state conditions such as power, temperatures, heat, or SOC (state-of-charge) to make the most accurate and suitable control decision depending on the context and need. Since many processes are hard to model, the forecasting task can be executed by exploiting the advantages of machine learning models such as LSTM, transformer, Autoformer, or CNN. Comparing the results to previous works, we can state that our best model also outperforms state-of-the-art and state-research forecasting methods for continuous variables like temperatures. The model’s ability to accurately predict future states allows for more informed and adaptive control decisions, leading to enhanced energy efficiency, reduced environmental impact, and improved grid stability.

Stichworte: Forecasting, Time Series, Machine Learning, LSTM, Smart Grids, Univariate missing data, asci, resonance.